Velocity Field
Velocity fields, representing the movement of fluids or objects within a space, are central to numerous scientific and engineering disciplines. Current research focuses on accurately estimating and reconstructing these fields using diverse techniques, including deep learning architectures like convolutional neural networks, neural ordinary differential equations, and physics-informed neural networks, often coupled with advanced algorithms such as flow matching and compressed sensing. These advancements are improving the accuracy and efficiency of velocity field analysis across applications ranging from autonomous vehicle navigation and geophysical monitoring to biomedical imaging and fluid dynamics simulations. The resulting improvements in data analysis and model creation have significant implications for various fields, enabling more precise predictions and informed decision-making.